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Detection by neuron populations European Mathematical Psychology Group, Graz, September 9 – 11, 2008 Uwe Mortensen University of Münster, Germany Detection Probability summation No probability summation Models of neural mechanisms The notion of probability summation: Among channels/mechanisms. Detection occurs if the activity in at least one of a number of channels exceeds threshold. Temporal: Detection occurs if the activity at at least one point of time (within some inerval J = [0, T]) exceeds threshold. Spatial: Detection occurs if the activity at at least one point in space (retinal coordinate) exceeds threshold. Usually just one type of PS is assumed in a given experiment Aim of detection experiments Probability summation Identification of neural mechanisms No probability summation Models/ Noise deterministic correlated white Inconsistency! Network/population models Extreme values theory Quick‘s model stochastic Nonlinear pooling Can be fitted to most data – meaningful? Test descriptive! Theoretical status unclear! Max mean detection Quick (1974) (c ) 1 2 n |chi |b i 1 Canonical models for PS in visual psychophysics |cht )| W (c ) 1 e unit respones Equivalent to Weibull-function channels c contrast (c ) 1 e c b spatial positions | hi |b Temporal PS 1 pi e|chi | b i with log 2 absorbed into Tinkering with maxima of Gaussian variables (pooling, MinkowskiMetric) Proof/derivation? Watson (1979) Goal directed ad hoc mathematics dt Quotes indicating use of Quick‘s approach: ''To allow for the statistical nature of the detection process, the effects of probability summation must be incorporated. … A convenient way to compute the effects of spatial probability summation is based on Quick's (1974) parameterization of the psychometric function. (Wilson 1978, p. 973; similarly Wilson, Philips et al 1979, p. 594, Graham 1989, and many others.) … probability summation […] requires that the noises associated with different stimulations be uncorrelated.'' Gorea, Caetta, Sagi (2005, p.2531) Similar statements by Meese \& Williams (2000), Tversky, Geisler \& Perry (2004) on contour grouping, Monnier (2006), Meese \& Summers (2007), Watson \& Ahumada (2005) take Quick/Minkowski as a basis for a general model of contrast detection – everything is explained (?) Justification: as usual. Detection and temporal probability summation – correlated noise Assumptions: ( )1Noise is Gaussian and stationary ( )2Autocorrelation satisfies (c ) 1 exp[ 2 2 1 R( ) 1 R ''(0) 2 o( ) 2 T 0 1 exp[ ( S g (t; c))2 dt ]] 2 where 2 R ''(0) the second spectral moment. 0 2 2 small noise fluctuates slowly 2 large noise fluctuates fast. 2 R ''(0) E[( '(t )) 2 ] 0 Illustration of second spectral moment: Example 1: R( ) e 2 /2 R ''(0) 2 ( R( ) ( ) (white noise) ) Example 2: Power spectrum: S ( ) k , 0 0 k0 sin(0 ) Autocorrelation: R ( ) 2 0 k03 2 3 Autocorrelations for different 0 and 2 : Temporal probability summation or maximum mean detection? Roufs & Blommaert1981) ( : Determination of the impulse and step response by means of the perturbation technique Prediction Data: g (t , c) c t p e t .079, b 1/12.67, p 3 For all values of 2 ! Detection by a population of matched neurons Hebb‘s rule implies adaptation of neuron – local matched filter Pre-filter (lens, retina, LGB) Stimulus Defined by a DOG-function Test of matched neuron model: no probability summation of any sort! Stimulus Response of pre-filter Response of matched neurons To be estimated: four free parameters of the pre-filter! Data and predictions „Channels“ and neuron populations: a stochastic model (based on a model of Gerstner (2000)) Channel = Population of N neurons The meaning of activity na (t, t t ) number of active neurons within [t, t t ]. na (t , t t ) N proportion of active neurons 1 na (t , t t ) activity of population at time t t 0 t N A(t ) lim Input current I i for the i-th neuron N I i (t ) wij (t t (j f ) ) I ext (t ) j 1 I ext (t ) is mean response of sensoric neurons activating observed population (t t (j f ) ) time course of postsynaptic current generated by spike at time t (j f ) wij synaptic coupling of i-th neuron with j th neuron , wij k0 / N homogeneous case: all-to-all coupling k0 0 excitatory k0 0 inhibitory k0 0 independence Activity of an individual neuron Integrate-and-fire neurons: m dui ui RI i (t ), i 1,..., N dt Membrane potential of i-th neuron ur ui Threshold (spike generation) Resting potential m RC time constant of cell membrane Membrane potential density n(u0 , u0 u ) N Proportion neurons with membrane potential between u0 and u0 u limN u0 u n(u0 , u0 u ) p(u, t )du, u 0 N Membrane potential density specify activity specify p(u, t ) Taylor-expansion of p(u, t ) Fokker-Planck-equation for p(u, t ) Stochastic differential equation for individual trajectory of u: Diffusion Drift du(t ) [a0u(t ) 0 I ext (t ) (t )]dt 2 (t )dW (t ), ur u(t ) Activity.from stimulus u (t ) is restricted to this interval! Activity from environment Derivative of Brownian motion = white noise du(t ) [a0u(t ) 0 I ext (t ) (t )]dt 2 (t )dW (t ), ur u(t ) du(t ) [a0 u(t ) 0 I ext (t ) (t ))]dt k0 (t )dW (t ), varies slowly compared to stimulus driven activity (Leopold, Murayama,Logothetis, 2003) determines (i) the level of activation not due to stimulus, and (ii) its variance, constant within trial, varies randomly between trials. Response to short pulses and step functions I ext (t ) c(at ) p exp(at ) (Roufs & Blommaert, 1981) (Response to a 2 ms pulse!) 15.5 7.5 2.5 1. The amplitude of mean response g is the same in all three cases – the smaller eta, the more pronounced is g 2. The peaks of the activity (spike rate) are extremely short compared to the mean response to the stimulus – prob. summation is unlikely! Detection model: The probability of detection depends on how pronounced the (mean) activity generated by the stimulus is with respect to the overall activity. Operationalised: Maximum of mean activity Ground activity: determines probability of false alarm g max x0 S Threshold value Noise (= activity) from environment ( > 0) Yeshurun & Carrasco, 1998, 1999; Treue, 2003; Martinez-Trujillo & Treue, 2004: focussing attention on a position or feature will reduce noise and enhance the response. However: Reynolds & Desimone, 2003: attention increases contrast gain in V4-neurons… Summary: 1. Quick‘s (1974) model (white noise) may lead to arbitrary interpretations of data 2. Correlated activity is the norm, not the exception 3. More realistic models (correlated noise) of probability summation show that probability summation is not a general mode of detection with max-mean or peak detection a special case 4. There may be adaptive processes – mechanisms are not necessarily invariant with respect to stimulation 5. Construct dynamic network or population models, - not diffuse „nonlinear summation“ models Thank you for your attention! Probability summation over time - the white noise case: Application of extreme value statistics for independent variables Weibull: (c) 1 exp[ 1 T Gauss: (c) 1 exp[ 1 T T 0 T 0 ( g (t , c) S ) dt ], with S 0 exp[( S g (t , c))]dt ] T 1 (0) 1 exp[ ( S ) dt ] 1 exp[( S ) ], S 0 T0 T 1 (0) 1 exp[ exp( S )dt ] 1 exp[exp( S )] T0 (0) 0 independent of T T But: 1 exp[ (t )dt ] (0) 1 exp[To ], 0 0 0 Hazard function Detection by TPS, Gaussian coloured noise Mean response g(t) Psychometric function: (c ) 1 exp[ 2 2 T 0 1 exp[ ( S g (t; c))2 dt ]] 2 Does not approach the expression for white noise if lambda-2 approaches infinity! The form of the psychometric function and its approximation by a Weibull function; different stimulus durations. Roufs & Blommaert (1981): Direct measurement of impulse and step responses by means of a perturbation technique. Impulse response, transient channel, as determined by perturbation method Impulse response, as derived from MTF: true according to Watson (1981) (although the additional assumption of a minimum phase system has to be made). Roufs & Blommaert (1981): Direct measurement of impulse and step responses by means of a perturbation technique (assuming maximum-ofmean detection). Impulse response for transient channels: 3- or 2-phasic? Watson (1981): triphasic impulse response is an artifact Quick‘s model with exponent between 2 and 7 yields 3-phasic impulse repsonse. True response is 2-phasic, as derived from MTF. Artifact? Assumption of probability summation? peak detection? Spatial probability summation: Templates or matched filters for circular discs of different diameters, superimposed on subthreshold Bessel-Jo-patterns for various spatial frequency parameters: neither temporal nor spatial probability summation. Data and predictions of template/MF-model, based on temporal peak detection There is no „nonlinear Minkowski-summation claimed by Watson & Ahumada (2005) as a necessary element in the detection process! Determination of line spread function – Hines (1976) Rentschler & Hilz (1976) – Disinhibition in LSF-measurements? Flanking line about 75% of test line! Disinhibition? Wilson, Philips et al (1979) – no disinhibition, but spatial probability summation, as modelled by Quick‘s rule LSF and LSF-estimates – probability summation, correlated noise p(false alarm) = .1 LSF and LSF-estimates – probability summation, correlated noise p(false alarm) = .01 Probability summation: correlated noise (q: luminance proportion of flanking lines, P(fA) = .1) No pseudo-disinhibition for „white noise“! Pseudo-inhibition for higher flanking contrasts, no pseudo-disinhibition! Probability summation does not predict disinhibition, - rather, inhibition! LSF-prediction by Quick‘s rule; stimulus configuration A Explore mechanisms Prob. Summation. Correlated noise No Prob. Summation White noise Deterministic models Stochastic models Implies Quick (1974) inconsistency (c ) 1 2 (Canonical model in visual psychophysics) n |chi |b Max Mean response i 1 Pooling Equivalent to Weibull-function 1/ b ( c ) 1 e c b with log 2 absorbed into 1/ b | hi |b i (Minkowski-Metric) Test